Dimitris Xydas
University of Reading
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Publication
Featured researches published by Dimitris Xydas.
PLOS Computational Biology | 2012
Julia H. Downes; Mark W. Hammond; Dimitris Xydas; Matthew C. Spencer; Victor M. Becerra; Kevin Warwick; Benjamin J. Whalley; Slawomir J. Nasuto
The functional networks of cultured neurons exhibit complex network properties similar to those found in vivo. Starting from random seeding, cultures undergo significant reorganization during the initial period in vitro, yet despite providing an ideal platform for observing developmental changes in neuronal connectivity, little is known about how a complex functional network evolves from isolated neurons. In the present study, evolution of functional connectivity was estimated from correlations of spontaneous activity. Network properties were quantified using complex measures from graph theory and used to compare cultures at different stages of development during the first 5 weeks in vitro. Networks obtained from young cultures (14 days in vitro) exhibited a random topology, which evolved to a small-world topology during maturation. The topology change was accompanied by an increased presence of highly connected areas (hubs) and network efficiency increased with age. The small-world topology balances integration of network areas with segregation of specialized processing units. The emergence of such network structure in cultured neurons, despite a lack of external input, points to complex intrinsic biological mechanisms. Moreover, the functional network of cultures at mature ages is efficient and highly suited to complex processing tasks.
EUROS | 2008
Dimitris Xydas; Daniel J. Norcott; Kevin Warwick; Benjamin J. Whalley; Slawomir J. Nasuto; Victor M. Becerra; Mark W. Hammond; Julia H. Downes; Simon Marshall
It is usually expected that the intelligent controlling mechanism of a robot is a computer system. Research is however now ongoing in which biological neural networks are being cultured and trained to act as the brain of an interactive real world robot – thereby either completely replacing or operating in a cooperative fashion with a computer system. Studying such neural systems can give a distinct insight into biological neural structures and therefore such research has immediate medical implications. In particular, the use of rodent primary dissociated cultured neuronal networks for the control of mobile ‘animats’ (artificial animals, a contraction of animal and materials) is a novel approach to discovering the computational capabilities of networks of biological neurones. A dissociated culture of this nature requires appropriate embodiment in some form, to enable appropriate development in a controlled environment within which appropriate stimuli may be received via sensory data but ultimate influence over motor actions retained. The principal aims of the present research are to assess the computational and learning capacity of dissociated cultured neuronal networks with a view to advancing network level processing of artificial neural networks. This will be approached by the creation of an artificial hybrid system (animat) involving closed loop control of a mobile robot by a dissociated culture of rat neurons. This ‘closed loop’ interaction with the environment through both sensing and effecting will enable investigation of its learning capacity This paper details the components of the overall animat closed loop system and reports on the evaluation of the results from the experiments being carried out with regard to robot behaviour.
BMC Neuroscience | 2013
Mark W. Hammond; Dimitris Xydas; Julia H. Downes; Giovanna Bucci; Victor M. Becerra; Kevin Warwick; Andrew Constanti; Slawomir J. Nasuto; Benjamin J. Whalley
BackgroundCortical cultures grown long-term on multi-electrode arrays (MEAs) are frequently and extensively used as models of cortical networks in studies of neuronal firing activity, neuropharmacology, toxicology and mechanisms underlying synaptic plasticity. However, in contrast to the predominantly asynchronous neuronal firing activity exhibited by intact cortex, electrophysiological activity of mature cortical cultures is dominated by spontaneous epileptiform-like global burst events which hinders their effective use in network-level studies, particularly for neurally-controlled animat (‘artificial animal’) applications. Thus, the identification of culture features that can be exploited to produce neuronal activity more representative of that seen in vivo could increase the utility and relevance of studies that employ these preparations. Acetylcholine has a recognised neuromodulatory role affecting excitability, rhythmicity, plasticity and information flow in vivo although its endogenous production by cortical cultures and subsequent functional influence upon neuronal excitability remains unknown.ResultsConsequently, using MEA electrophysiological recording supported by immunohistochemical and RT-qPCR methods, we demonstrate for the first time, the presence of intrinsic cholinergic neurons and significant, endogenous cholinergic tone in cortical cultures with a characterisation of the muscarinic and nicotinic components that underlie modulation of spontaneous neuronal activity. We found that tonic muscarinic ACh receptor (mAChR) activation affects global excitability and burst event regularity in a culture age-dependent manner whilst, in contrast, tonic nicotinic ACh receptor (nAChR) activation can modulate burst duration and the proportion of spikes occurring within bursts in a spatio-temporal fashion.ConclusionsWe suggest that the presence of significant endogenous cholinergic tone in cortical cultures and the comparability of its modulatory effects to those seen in intact brain tissues support emerging, exploitable commonalities between in vivo and in vitro preparations. We conclude that experimental manipulation of endogenous cholinergic tone could offer a novel opportunity to improve the use of cortical cultures for studies of network-level mechanisms in a manner that remains largely consistent with its functional role.
IEEE Transactions on Biomedical Engineering | 2012
Matthew C. Spencer; Julia H. Downes; Dimitris Xydas; Mark W. Hammond; Victor M. Becerra; Kevin Warwick; Benjamin J. Whalley; Slawomir J. Nasuto
Cultures of cortical neurons grown on multielectrode arrays exhibit spontaneous, robust, and recurrent patterns of highly synchronous activity called bursts. These bursts play a crucial role in the development and topological self-organization of neuronal networks. Thus, understanding the evolution of synchrony within these bursts could give insight into network growth and the functional processes involved in learning and memory. Functional connectivity networks can be constructed by observing patterns of synchrony that evolve during bursts. To capture this evolution, a modeling approach is adopted using a framework of emergent evolving complex networks and, through taking advantage of the multiple time scales of the system, aims to show the importance of sequential and ordered synchronization in network function.
IEEE Transactions on Neural Systems and Rehabilitation Engineering | 2011
Dimitris Xydas; Julia H. Downes; Matthew C. Spencer; Mark W. Hammond; Slowomir J. Nasuto; Ben Whalley; Victor M. Becerra; Kevin Warwick
In order to harness the computational capacity of dissociated cultured neuronal networks, it is necessary to understand neuronal dynamics and connectivity on a mesoscopic scale. To this end, this paper uncovers dynamic spatiotemporal patterns emerging from electrically stimulated neuronal cultures using hidden Markov models (HMMs) to characterize multi-channel spike trains as a progression of patterns of underlying states of neuronal activity. However, experimentation aimed at optimal choice of parameters for such models is essential and results are reported in detail. Results derived from ensemble neuronal data revealed highly repeatable patterns of state transitions in the order of milliseconds in response to probing stimuli.
computational intelligence and security | 2010
Matthew C. Spencer; Dimitris Xydas; Julia H. Downes; Mark W. Hammond; Victor M. Becerra; Kevin Warwick; Benjamin J. Whalley; Slawomir J. Nasuto
Determining how the functional connectivity in cortical cultures on multi-electrode arrays develops over time can provide new and helpful insight into how cognitive pathways form. This study uses both data- and model-driven approaches to determine what dependencies are present in and between functional connectivity networks derived from bursts of extra-cellularly recorded activity. Two models were used to capture the dynamics of individual functional connections and their consistencies were verified using surrogate data. By comparing network-wide properties between model generated networks and functional networks from data, complex interdependencies were revealed. This indicates the persistent co-activation of neuronal pathways, as can be found in whole brain structures and further supports the use of cortical cultures as a consistent model for neuronal studies.
Paladyn | 2011
Matthew C. Spencer; Julia H. Downes; Dimitris Xydas; Mark W. Hammond; Victor M. Becerra; Benjamin J. Whalley; Kevin Warwick; Slawomir J. Nasuto
Models of functional connectivity in cortical cultures on multi-electrodes arrays may aid in understanding how cognitive pathways form and improve techniques that aim to interface with neuronal systems. To enable research on such models, this study uses both data- and model-driven approaches to determine what dependencies are present in and between functional connectivity networks derived from bursts of extracellularly recorded activity. Properties of excitation in bursts were analysed using correlative techniques to assess the degree of linear dependence and then two parallel techniques were used to assess functional connectivity. Three models presenting increasing levels of spatio-temporal dependency were used to capture the dynamics of individual functional connections and their consistencies were verified using surrogate data. By comparing network-wide properties between model generated networks and functional networks from data, complex interdependencies were revealed. This indicates the persistent co-activation of neuronal pathways in spontaneous bursts, as can be found in whole brain structures.
computational intelligence and security | 2010
Dimitris Xydas; Matthew C. Spencer; Julia H. Downes; Mark W. Hammond; Victor M. Becerra; Kevin Warwick; Benjamin J. Whalley; Slawomir J. Nasuto
Recent advances in electrophysiological techniques have made it possible to culture in vitro biological networks and closely monitor ensemble neuronal activity using multi-electrode recording techniques. One of the main challenges in this area of research is attempting to understand how intrinsic activity is propagated within these neuronal networks and how it may be manipulated via external stimuli in order to harness their computational capacity. This raises the question of what similarities and differences arise between spontaneous and evoked responses and how external stimulation can be optimally applied in order to robustly control the neuronal plasticity of neuronal cultures. In this paper we present in detail an application of machine learning methods, specifically hidden Markov models with Poisson-based output distributions, with which we aim to perform comparative studies between spontaneous and evoked neuronal activity over different ages of network development.
Defence Science Journal | 2010
Kevin Warwick; Dimitris Xydas; Slawomir J. Nasuto; Victor M. Becerra; Mark W. Hammond; Julia H. Downes; Simon Marshall; Benjamin J. Whalley
Archive | 2008
Mark W. Hammond; Simon Marshall; Julia H. Downes; Dimitris Xydas; Slawomir J. Nasuto; Victor M. Becerra; Kevin Warwick; Benjamin J. Whalley